Research Article Multiobjective Robust Design of the Double Wishbone Suspension System Based on Particle Swarm Optimization

Size: px
Start display at page:

Download "Research Article Multiobjective Robust Design of the Double Wishbone Suspension System Based on Particle Swarm Optimization"

Transcription

1 e Scientific World Journal, Article ID , 7 pages Research Article Multiobjective Robust Design of the Double Wishbone Suspension System Based on Particle Swarm Optimization Xianfu Cheng and Yuqun Lin School of Mechanical and Electronical Engineering, East China Jiaotong University, Nanchang , China Correspondence should be addressed to Xianfu Cheng; chxf xn@sina.com Received 22 October 2013; Accepted 19 December 2013; Published 11 February 2014 Academic Editors: T. Chen, Q. Cheng, and J. Yang Copyright 2014 X. Cheng and Y. Lin. This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. The performance of the suspension system is one of the most important factors in the vehicle design. For the double wishbone suspension system, the conventional deterministic optimization does not consider any deviations of design parameters, so design sensitivity analysis and robust optimization design are proposed. In this study, the design parameters of the robust optimization are the positions of the key points, and the random factors are the uncertainties in manufacturing. A simplified model of the double wishbone suspension is established by software ADAMS. The sensitivity analysis is utilized to determine main design variables. Then, the simulation experiment is arranged and the Latin hypercube design is adopted to find the initial points. The Kriging model is employed for fitting the mean and variance of the quality characteristics according to the simulation results. Further, a particle swarm optimization method based on simple PSO is applied and the tradeoff between the mean and deviation of performance is made to solve the robust optimization problem of the double wishbone suspension system. 1. Introduction Suspension used in an automobile is a system mediating theinterfacebetweenthevehicleandtheroad,andthe functionsofitarerelatedtoawiderangeofdrivability such as handing ability, stability, and comfortability [1]. There are many different structures of vehicle suspension system according to the mechanical jointing pattern, the type of springs, the independence of the left and right wheels, and so forth, of which the independent double wishbone suspension is extensively used. With reference to automobile suspension system, a number of researches have devoted considerable efforts to design optimization. Many important relationships have been highlighted among vehicle suspension parameters and suspension performance indices [2]. These researches can be classed into several aspects: (1) a single-objective optimization of separately only considering reducing the dynamic load of the tire on the road or smoothness [3]; (2) transforming the traditional multiobjective optimization problem into singleobjective optimization problem through a mathematical transformation [4]; (3) using multiobjective and multidecision optimization of true sense of the decision making after the first optimization [5]; (4) carrying out the analyses of displacement, velocity, and acceleration for McPherson strut suspension system using displacement matrix [6]. The optimal design is a balance of the kinematics and compliance characteristics of the suspension system [7]. But these approaches are based on conventional deterministic optimization and do not consider any deviations of design parameters, such as manufacturing errors of parts, which may result in unreliability of design objectives and constraints, and the computation time of these approaches is enormous. Robust design is powerful and effective in helping manufacturers to design their products and process as well as to solve troublesome quality problems, ultimately leading to higher customer satisfaction and operational performance [7]. However, a comprehensive multi-objective and robust approach seems to little be addressed. Chun et al. studied optimal designs for suspension systems based on reliability analyses [8]. Choi et al. performed a reliability optimization with the single-loop single-variable method by using results

2 2 The Scientific World Journal Particle swarm optimization No Start Establish the virtual model Problem definition and optimization setup No Design of experiments Numerical simulation of experiments Construct the response surface model Metamodels accurate Yes Generation of initial population Evaluation of objective function values Robust optimization solutions conversed Yes End Figure 1: Robust design based on particle swarm optimization. of a deterministic optimization as initial values of reliabilitybased optimization using the finite difference design sensitivity [9]. Robust optimization design is essentially multiple objectives: (1) optimizing the mean of performance and (2) minimizing the variation of performance. Since performance variation is often minimized at the cost of sacrificing performance, a tradeoff between the aforementioned two aims is generally presented. The particle swarm optimization (PSO) approach has demonstrated its strength in various types of multiobjective optimization design, including vehicles, aircrafts, and manufacturing facilities [10]. So, this study presents a new optimal method based on robust design and PSO for suspension system. The objectives are the toe angle and the lateral slip of the wheel grounding point and their variations of the double wishbone suspension system. The mean and variance models are established by the Kriging model, and then PSO is used to analyze the robust performance of the system. This may help the designers to identify layout of the suspension system and to develop the optimum design system of suspension. Thispaperisorganizedasfollows:inSection2, the virtual model of the double wishbone suspension system is established; in Section 3, the model of multi-objectiverobust optimization is built; the robust designs based on particle swarm optimization are described and analyzed in Section 4 and conclusions are presented in Section 5.Theprocessofthe robust design based on particle swarm optimization is shown in Figure 1. Table 1: Key point. Key point x y z Lca front Lca back Lca outer Uca front Uca back Uca outer Shaft inner Spring lower Subframe front Subframe back Tie rod inner Tie rod outer Spring upper The center of the wheel The Virtual Model of the Double Wishbone Suspension System The double-wishbone suspension system is a group of space RSSR (revolute joint spherical join spherical join revolute joint) four-bar linkage mechanisms. Its kinematics relations are complicated, kinematics visualization analysis is difficult, and its performance is poor. Thus, rational settings of the position parameters of the guiding mechanism are crucial to assuring good performance of the independent double-wishbone suspension. The vehicle s right and left suspensions are symmetrical, so choose the left or the right part of the suspension system which is studied to simulate the entire mechanism, excluding thevariationofwheelcentredistance(wcd)whichisadvisable. The key design parameters are the coordinates of the key points (see Table 1) and the assembly relationship between every member. A model of the left half of an independent double wishbone suspension system is established, as shown in Figure 2. Major components include the upper control arm (UCA), lower control arm (LCA), tie rod, knuckle, spring, and absorber. The design purpose of this study is to determine the positions of the joints. A commercial program, ADAMS, is employed for modelling and analysing the suspension system. Makethefollowingassumptionsondoublewishbone suspension. (1) The composition members of the suspension are rigid body, and the elastic deformation is ignored. (2) Rigid connection between the various components is used and ignores the internal clearance and friction. (3) Only consider the ground roughness, without regarding to the dynamic factors. (4) Add an incentive on the test platform to simulate the unevenness of the ground; the tires are always in contact with the test bench.

3 The Scientific World Journal 3 Wheel UCA Absorber Tie rod Test platform LCA Knuckle Figure 3: Sideways displacement. Figure 2: Double wishbone suspension model. Addanexcitationsourceonthetestplatform,y = 50 sin(2πt), and then taking numerical simulation, the results are shown in Figures 3 and 4. As shown in Figure 3, the wheel sideways displacement changes with time. The change of sideways displacement is calculated according to the variation of the wheel travel. As shown in Figure 4, thetoeanglechangeswithtime.the change of toe angle is calculated according to the variation of the wheel travel too. 3. Model of the Robust Design and Approximation Model In this section, the model of the robust design is built. A fullfactor test and sensitivity analysis are utilized to determine main design variables. The Latin hypercube design is adopted tofindtheinitialpoint,andthedatabaseiscreatedforfitting the kriging model of the robust design Robust Design. Robust design has become a powerful tool to aid designers in making judicious selection and control of variation. The fundamental principle of robust design is to improve the quality of a product by eliminating the variation of controllable factors (i.e., dimension, assemble gap, material properties, etc.) and uncontrollable factors (i.e., applied loadings, environment, aging, etc.). Consequently, compared with traditional optimization design, robust design can make the product maintain good performance [11]. A standard engineering optimization problem is normally formulated as follows: min f (x) s.t. g j (x) 0, j=1,2,...j x L <x<x U, where f(x) is the objective function and g j (x) is the jth constraint function; x, x L,andx U are vectors of design variables, their lower bounds, and upper bounds, respectively. If the design variable x follows a statistical distribution, (1) Figure 4: Toe angle. a robust design problem can be stated as a biobjective robust design problem as follows: min [μ f,σ f ] s.t. g j (x) +k j n i=1 gj xi x L +Δx x x U Δx i, j=1,...,j Δx, where μ f and σ f are the mean and deviation of the objective function f(x), respectively. Their values can be obtained through Monte Carlo simulation or the first order Taylor expansion if the design deviation of x i is small. When using Taylor expansions, μ f and σ f can be represented by the following equations: σ 2 f = n μ f =f(x), i=1 ( 2 f ) 2 x i, xi where σ xi is the standard deviation of the ith x component Sensitivity Analysis. There are 12 key points, and each one of them has 3 coordinate values. So, there are 36 coordinate parameters. If every one of the coordinate is selected as design variables, it needs much iteration. In order to reduce time of analysis and save resources, the full-factor test is utilized to determine main design variable, and the impact of every dependent variable is in Table 2. There are three levels, 1 3, and the larger the value, the greater the impact of the dependent variable. As shown in Table 2, Lcafront x, Lca outer x, Uca front x, Uca front y, Uca back x, and Uca outer x have made a minimal impact on sideways (2) (3)

4 4 The Scientific World Journal Table 2: Impact of each variable. Impact Coordinates of key points Sideways Toe angle displacement Lca front x 1 1 Lca front y 2 2 Lca front z 3 3 Lca back x 1 2 Lca back y 1 3 Lca back z 2 3 Lca outer x 1 1 Lca outer y 1 3 Lca outer z 3 2 Uca front x 1 1 Uca front y 1 1 Uca front z 3 3 Uca back x 1 1 Uca back y 1 2 Uca back z 2 3 Uca outer x 1 1 Uca outer y 1 3 Uca outer z 3 3 displacement and toe angle. Other coordinates of key points have made a great impact on sideways displacement and toe angle. Based on the test results, 12 main design variables are selected as controllable factors, and the variable name and its corresponding physical quantities are shown in Table Kriging Model. Engineering optimization problems often need enormous computation time for several programs running at the same time. We cannot provide the evaluation of the objective function and constraints to execute such large scale of exact analysis. So the application of approximation is necessary. In this paper, the Kriging model is adopted to build the approximation. Kriging model, one of the response surface models (RSM), has such advantages as unbiased estimator at the training sample point, desirably strong nonlinear approximating ability, and flexible parameter selection of the model, and thus it is quite suitable for approximate models [12]. Kriging models have a great promise for building accurate global approximations of a design space. These models are extremely flexible because of the wide range of spatial correlation functions that can be chosen for building the approximation, provided that sufficient sample data are available to capture the trends in the system responses; as a result, Kriging models can approach linear and nonlinear functions equally well. In addition, Kriging models can either honor the data, by providing an exact interpolation of the data, or smooth the data, by providing an inexact interpolation. One of the defects of using RSM in optimization is that it is apt to miss the global optimum because estimation value obtained with RSM includes errors at an unknown point [13]. Table 3: Controllable factors. Key point Level 1 Level 2 Level 3 Lca front y(x 1 ) Lca front z(x 2 ) Lca back x(x 3 ) Lca back y(x 4 ) Lca back z(x 5 ) Lca outer y(x 6 ) Lca outer z(x 7 ) Uca front z(x 8 ) Uca back y(x 9 ) Uca back z(x 10 ) Uca outer y(x 11 ) Uca outer z(x 12 ) In this paper the Kriging model is introduced into the robust design. In the conventional Kriging model, the performance y(x) is modelled as follows: y (x) =β T h (x) +Z(x), (4) where β T h(x) is the regression component (e.g., a polynomial) which captures global trends; Z(x) is assumed to be a Gaussian process indexed by input variables x, withzero mean and stationary covariance. From a Bayesian perspective, the prior knowledge of the performance y(x) is specified by a Gaussian process, which ischaracterizedbythepriormean(i.e.,theglobaltrend) and prior covariance. Given the observations, the posterior process is also a Gaussian process (treating the covariance parameters as known and assuming a Gaussian prior distribution for β). The prediction of y(x) is usually taken to be the posterior mean, and the prediction uncertainty is quantified by the posterior covariance. The conventional Kriging model assumes that the Gaussian process has a stationary covariance, with the covariance function defined as follows: C st (x m,x n ;Θ)=σ 2 ρ st (x m,x n ;θ), (5) where ρ st is the correlation function. The hyper parameter set Θ is composed of {σ 2 ;θ}. A frequently used Gaussian correlation function is ρ st (x m,x n ;θ)=exp [ L L=1 θ (l) (x (l) m x(l) n )2 ]. (6) The variance σ 2 provides the overall vertical scale relativetothemeanofgaussianprocessintheoutputspace; θ = {θ (l) (l = 1,2,...,L)} are the correlation parameters (scaling factors) associated with each input variable x (l), which reflects the smoothness of the true performance. The stationary covariance indicates that the correlation function ρ st (x m,x n ;θ) between any two sites x m and x n depends on only the distance (scaled by θ) between x m and x n in (5)and (6); the subscript st means stationary.

5 The Scientific World Journal 5 In order to innovate or improve and develop a new product and confirm a new technical parameter experiments usually need to be done repeatedly in the process of production and scientific research. It is very important to reasonably arrange experimental procedures to reduce the times of experiments and shorten the time of each experiment and avoid blindness. It requires two aspects of works to be done in order to solve the problem mentioned above. One is to design an experiment that can fully reflect the effect of all factors, which can reduce time of experiments and save resources. Another is to analyze the experimental results, in order to acquirereasonableconclusionsandtheerroranalysis. DOE can analyze a design space and provide a rough estimate of an optimal design, which can be used as a starting point for numerical optimization. The Latin hypercube design could cover the design space more evenly than other DOE methods and generate more evenly distributed points. Therefore, in this paper, the Latin hypercube design is adopted to find the initial point and created the database for approximation model. For this problem, the inputs are the 12 main design variables, the outputs are the mean and their variance of the toe angle and sideways displacement, and 200 sample points from an LHS design are used to fit the kriging model. A set of 393 verification points, randomly selected across the domain, is used to evaluate the RMSE for each kriging model. Kriging model is established to fit the multiobjective robust design. The r-square of the kriging model is 0.87, so it can fit the virtual model. 4. Robust Design Based on Particle Swarm Optimization The particle swarm optimization (PSO) is one of the evolutionary computation techniques introduced by Kennedy and Eberhart in 1995 [14]. It is a population-based search algorithm and is initialized with a population of random solutions, named particles; PSO makes use of a velocity vector to update the current position of each particle in the swarm [15, 16]. Particle swarm optimization is usually used as a traditional optimization method which is inspired from the social behaviourofflocksofbirds.itismorecompetitiveinvarious aspects, for example, due to its simplicity. Particle swarm optimization, genetic algorithms, and other evolutionary algorithms are all artificial life calculated. But particle swarm optimization is different from other evolutionary algorithms, using group iterative solution of cooperation mechanisms to generate the optimal solution instead of using group iterative solution of competing mechanisms. In PSO algorithm, each individual is called particle, which represents a potential solution. The algorithm achieves the best solution by the variability of some particles in the tracing space. The particles search in the solution space following the best particle by changing their positions and the fitness frequently; the flying direction and velocity are determined by the objective function. No Start Initialize Evaluate particle Update optimum position Update particle position Termination conditions Yes End Figure 5: Particle swarm optimization. The procedure of PSO is as follows: (1) initialize the original position and velocity of particle swarm; (2) calculate the fitness value of each particle; (3) for each particle, compare the fitness value with the fitness value of pbest; if current value is better, then renew the position with current position, and update the fitness value simultaneously; (4) determine the best particle of group with the best fitness value; if the fitness value is better than the fitness value of gbest, then update the gbest and its fitness value with the position; (5) check the finalizing criterion; if it has been satisfied, quit the iteration; otherwise, return to step (2). ItcanbeshownasFigure5. Assuming X i = (x i1,x i2,...,x id ) is the position of ith particle in D-dimension, V i =(V i1, V i2,...,v id ) is its velocity which represents its direction of searching. In iteration process, each particle keeps the best position pbest found by itself; besides, it also knows the best position gbest searched by the group particles and changes its velocity according to the two best positions. The PSO is described in vector notation as to the follows: ] i (t+l) =ω] i (t) +c 1 r 1 (t) (p i (t) x i (t)) +c 2 r 2 (t) (pg (t) x i (t)), x i (t+1) =x i (t) +j+] i (t+1), i=1,2,...,s, (7)

6 6 The Scientific World Journal where s is the swarm size. c 1 and c 2 are the nonnegative acceleration coefficients; these two constants make the particles have the ability of self-summary and learn from the excellent individuals of the groups, so the particles can close to the personal best solution of its own history and the global best solution within population or field. Typically value of c 1 and c 2 is 2. ω is the inertia weight, r l (t) and r 2 (t) U(0, 1), x i (t) is the position of particle i at time t, ] i (t) is the velocity of particle i at time t, p i (t) is the personal best solution of particle i at time t,andpg(t) is the global best solution at time t. The first term of (8)isthepreviousvelocityoftheparticle vector.thesecondandthirdtermsareusedtochangethe velocity of the particle. Without the second and third terms, theparticlewillkeepon flying inthesamedirectionuntil it hits the boundary. The particle position x(t + l) is updated using its current value and the newly computed velocity V i (t+ l), which is determined by the values of V i (t), x i (t), p i (t),and pg(t) and coefficients ω, c 1,andc 2 [17]. In experiment, the population of group particle is 40; c 1, and c 2 are set to 2; the maximum time of iteration is It is acceptable if the difference between the best solution obtained by the optimization algorithm and the true solution is less than 1e 6. The inertia weight is linear decreasing inertia all, which is determined by the following equation: Table 4: Robust results. Key point Initial value Robust results Lca front y(x 1 ) Lca front z(x 2 ) Lca back x(x 3 ) Lca back y(x 4 ) Lca back z(x 5 ) Lca outer y(x 6 ) Lca outer z(x 7 ) Uca front z(x 8 ) Uca back y(x 9 ) Uca back z(x 10 ) Uca outer y(x 11 ) Uca outer z(x 12 ) w=w max w max w min iter max k, (8) where w max is the start of inertia weight which is set to 0.9 and w min is the end of inertia weight which is set to 0.05; iter max is the maximum times of iteration; k is the current iteration times. In order to reflect the universality of experiment, the original position and velocity are randomly generated. Particle swarm optimization was used to search the optimal solution. A particle swarm optimization is created, the maximumiterationsaresetto50,thenumberofparticlesis set to 15, and the objectives are the values and their variations of the toe angle and sideways displacement. V. Pareto, the French economist, who studied the multi-objective optimization problem of economics first, proposed the concept of Pareto solution set. There are 27 Pareto solutions in the results of the optimization. In multiobjective optimization, each optimization objective is often conflicting, which requires coordination between the optimal solutions of each target. Considering the importanceofeachtarget,chooseoneparetooptimalsolution, andthedesignvaluesofitareshownintable4. Usingthe results of the robust design to have a test in the ADAMS, the simulation results are shown in Figures 6 and 7. Itcanbeseenthatthemaximumdeviationinthetoe angle for the optimal design has been reduced by 52 percent, compared with the base design. As the discussion of the results, the most concerned factor is the relationship between objective function and design parameter. By comparing the experimental results, the robust design based on particle swarm significantly improved the robust of the toe angle and the sideways displacement, ensuring the reasonable of the design performance. 5. Conclusion Figure 6: Sideways displacement. In this study, a robust design based on bioinspired computation is presented and illustrated by the design of a double wishbone suspension system in order to reduce the effect of variations due to uncertainties in fabrication. As they are directly related to fabrication errors, the coordinates of key points were taken as design variables and at the same time are considered as random variables. So the robust design optimization problem had 13 design variables (joint positions) and 13 random constants (fabrication errors of joint positions). In this paper, the Latin hypercube design is adopted to make DOE design matrix of the 13 design variables. The Kriging model is built according to the result of DOE, and then the particle swarm is used to search optimal solution of the robust design. Particle swarm is implemented in a test case and the results show that the method can decrease the solution s time. The robustness of solution is improved. The improvement in robustness became larger as the amount of fabrication errors increases. Conflict of Interests The authors declare that there is no conflict of interests regarding the publication of this paper.

7 The Scientific World Journal 7 Acknowledgments Figure 7: Toe angle. This work was supported by the National Natural Science Foundation of China under the Grant no and by the Natural Science Foundation of Jiangxi Province under the Grant no BAB The authors would like to thank the reviewers for their valuable comments and suggestions. References [1] J. C. Dixon, Tires, Suspension and Handlin, Society of Automotive Engineers, 2nd edition, [2] G. Massimiliano and L. Francesco, Multi-objective robust design of the suspension system of road vehicles, Vehicle System Dynamics,vol.41,pp ,2004. [3] F.-C. Wu and C.-C. Chyu, Optimization of robust design for multiple quality characteristics, International Journal of Production Research,vol.42,no.2,pp ,2004. [4] W.-J. Yin, Y. Han, and S.-P. Yang, Dynamics analysis of air spring suspension system under forced vibration, China JournalofHighwayandTransport,vol.19,no.3,pp , [5] P.-M. Lu, L.-M. He, and J.-M. You, Optimization of vehicle suspension parameters based on comfort and tire dynamic load, China Journal of Highway and Transport, vol.20,no.1, pp , [6] H. Y. Kang and C. H. Suh, Synthesis and analysis of sphericalcylindrical (SC) link in the McPherson strut suspension mechanism, Journal of Mechanical Design, vol. 116, no. 2, pp , [7] T. Wang, Multi-objective and multi-criteria decision optimization of automobile suspension parameters, Transactions of the Chinese Society of Agricultural Machinery,vol.28,no.11,pp.27 32, [8] H. H. Chun, S. J. Kwon, and T. Tak, Reliabilitybased design optimization of automotive suspension systems, International Journal of Automotive Technology, vol.8,no.6,pp , [9] B.-L. Choi, J.-H. Choi, and D.-H. Choi, Reliability-based design optimization of an automotive suspension system for enhancing kinematic and compliance characteristics, International Journal of Automotive Technology, vol.6,no.3,pp , [10] S. R. Singiresu and K. A. Kiran, Particle swarm methodologies for engineering design optimization, in Proceedings of the International Design Engineering Technical Conferences and Computers and Information in Engineering Conference (ASME 09), pp , San Diego, Calif, USA, August [11] J.-J. Chen, R. Xiao, Y. Zhong, and G. Dou, Multidisciplinary robust optimization design, Chinese Journal of Mechanical Engineering, vol. 18, no. 1, pp , [12] A. Giunta and L. T. Watson, A Comparison of Approximation Modeling Technique: Polynomial Versus Interpolating Models, AIAA/USAF/ NASA/ISSMO, 7th edition, [13] R. J. Donald, S. Matthias, and J. W. William, Efficient global optimization of expensive black-box functions, Journal of Global Optimization, vol. 13, no. 4, pp , [14] J. Kennedy and R. C. Eberhart, Particle swarm optimization, in Proceedings of the IEEE International Conference on Neural Network, pp , Perth, Australia, December [15] S. Mandal, R. Kar, D. Mandal, and S. P. Ghoshal, Swarm intelligence based optimal linear phasefir high pass filter design using particle swarm optimization with constriction factor and inertia weight approach, World Academy of Science, Engineering and Technology, vol. 5, no. 8, pp , [16] W.-M.Zhongi ands.-j. Li, Feng QIAN.θ-PSO: a new strategy of particle swarm optimization, Journal of Zhejiang University, vol. 9, no. 6, pp , [17] S. Mandal and S. P. Ghshal, Swarm intelligence based optimal linear fir high pass filter design using particle swarm optimization with constriction factor and inertia weight approach, in Proceedings of the IEEE Student Conference on Research and Development (SCOReD 11), pp , Cyberjaya, Malaysia, December 2011.

8 Journal of Industrial Engineering Multimedia The Scientific World Journal Applied Computational Intelligence and Soft Computing International Journal of Distributed Sensor Networks Fuzzy Systems Modelling & Simulation in Engineering Submit your manuscripts at Journal of Computer Networks and Communications Artificial Intelligence International Journal of Biomedical Imaging Artificial Neural Systems International Journal of Computer Engineering Computer Games Technology Software Engineering International Journal of Reconfigurable Computing Robotics Computational Intelligence and Neuroscience Human-Computer Interaction Journal of Journal of Electrical and Computer Engineering

Research Article Path Planning Using a Hybrid Evolutionary Algorithm Based on Tree Structure Encoding

Research Article Path Planning Using a Hybrid Evolutionary Algorithm Based on Tree Structure Encoding e Scientific World Journal, Article ID 746260, 8 pages http://dx.doi.org/10.1155/2014/746260 Research Article Path Planning Using a Hybrid Evolutionary Algorithm Based on Tree Structure Encoding Ming-Yi

More information

Open Access Research on the Prediction Model of Material Cost Based on Data Mining

Open Access Research on the Prediction Model of Material Cost Based on Data Mining Send Orders for Reprints to reprints@benthamscience.ae 1062 The Open Mechanical Engineering Journal, 2015, 9, 1062-1066 Open Access Research on the Prediction Model of Material Cost Based on Data Mining

More information

OPTIMAL KINEMATIC DESIGN OF A CAR AXLE GUIDING MECHANISM IN MBS SOFTWARE ENVIRONMENT

OPTIMAL KINEMATIC DESIGN OF A CAR AXLE GUIDING MECHANISM IN MBS SOFTWARE ENVIRONMENT OPTIMAL KINEMATIC DESIGN OF A CAR AXLE GUIDING MECHANISM IN MBS SOFTWARE ENVIRONMENT Dr. eng. Cătălin ALEXANDRU Transilvania University of Braşov, calex@unitbv.ro Abstract: This work deals with the optimal

More information

Multi-objective optimization of the geometry of a double wishbone suspension system

Multi-objective optimization of the geometry of a double wishbone suspension system Multi-objective optimization of the geometry of a double wishbone suspension system Juan C. Blanco 1, Luis E. Munoz 2 University of Los Andes, Bogotá, Colombia 1 Corresponding author E-mail: 1 juan-bla@uniandes.edu.co,

More information

Research on time optimal trajectory planning of 7-DOF manipulator based on genetic algorithm

Research on time optimal trajectory planning of 7-DOF manipulator based on genetic algorithm Acta Technica 61, No. 4A/2016, 189 200 c 2017 Institute of Thermomechanics CAS, v.v.i. Research on time optimal trajectory planning of 7-DOF manipulator based on genetic algorithm Jianrong Bu 1, Junyan

More information

Module 1 Lecture Notes 2. Optimization Problem and Model Formulation

Module 1 Lecture Notes 2. Optimization Problem and Model Formulation Optimization Methods: Introduction and Basic concepts 1 Module 1 Lecture Notes 2 Optimization Problem and Model Formulation Introduction In the previous lecture we studied the evolution of optimization

More information

Traffic Signal Control Based On Fuzzy Artificial Neural Networks With Particle Swarm Optimization

Traffic Signal Control Based On Fuzzy Artificial Neural Networks With Particle Swarm Optimization Traffic Signal Control Based On Fuzzy Artificial Neural Networks With Particle Swarm Optimization J.Venkatesh 1, B.Chiranjeevulu 2 1 PG Student, Dept. of ECE, Viswanadha Institute of Technology And Management,

More information

Recent advances in Metamodel of Optimal Prognosis. Lectures. Thomas Most & Johannes Will

Recent advances in Metamodel of Optimal Prognosis. Lectures. Thomas Most & Johannes Will Lectures Recent advances in Metamodel of Optimal Prognosis Thomas Most & Johannes Will presented at the Weimar Optimization and Stochastic Days 2010 Source: www.dynardo.de/en/library Recent advances in

More information

Research Article An Improved Topology-Potential-Based Community Detection Algorithm for Complex Network

Research Article An Improved Topology-Potential-Based Community Detection Algorithm for Complex Network e Scientific World Journal, Article ID 121609, 7 pages http://dx.doi.org/10.1155/2014/121609 Research Article An Improved Topology-Potential-Based Community Detection Algorithm for Complex Network Zhixiao

More information

Handling Multi Objectives of with Multi Objective Dynamic Particle Swarm Optimization

Handling Multi Objectives of with Multi Objective Dynamic Particle Swarm Optimization Handling Multi Objectives of with Multi Objective Dynamic Particle Swarm Optimization Richa Agnihotri #1, Dr. Shikha Agrawal #1, Dr. Rajeev Pandey #1 # Department of Computer Science Engineering, UIT,

More information

SIMULTANEOUS COMPUTATION OF MODEL ORDER AND PARAMETER ESTIMATION FOR ARX MODEL BASED ON MULTI- SWARM PARTICLE SWARM OPTIMIZATION

SIMULTANEOUS COMPUTATION OF MODEL ORDER AND PARAMETER ESTIMATION FOR ARX MODEL BASED ON MULTI- SWARM PARTICLE SWARM OPTIMIZATION SIMULTANEOUS COMPUTATION OF MODEL ORDER AND PARAMETER ESTIMATION FOR ARX MODEL BASED ON MULTI- SWARM PARTICLE SWARM OPTIMIZATION Kamil Zakwan Mohd Azmi, Zuwairie Ibrahim and Dwi Pebrianti Faculty of Electrical

More information

manufacturing process.

manufacturing process. Send Orders for Reprints to reprints@benthamscience.ae The Open Automation and Control Systems Journal, 2014, 6, 203-207 203 Open Access Identifying Method for Key Quality Characteristics in Series-Parallel

More information

Multi-Objective Optimization of Gatling gun Tripod Based on Mesh. Morphing and RBF Model

Multi-Objective Optimization of Gatling gun Tripod Based on Mesh. Morphing and RBF Model Multi-Objective Optimization of Gatling gun Tripod Based on Mesh Morphing and RBF Model BINBIN HUA, RUILIN WANG, YONGJIAN LI, XIAOYONG KANG, HAO TIAN Department of Mechanical Engineering Shijiazhuang Mechanical

More information

The optimum design of a moving PM-type linear motor for resonance operating refrigerant compressor

The optimum design of a moving PM-type linear motor for resonance operating refrigerant compressor International Journal of Applied Electromagnetics and Mechanics 33 (2010) 673 680 673 DOI 10.3233/JAE-2010-1172 IOS Press The optimum design of a moving PM-type linear motor for resonance operating refrigerant

More information

Multidisciplinary Analysis and Optimization

Multidisciplinary Analysis and Optimization OptiY Multidisciplinary Analysis and Optimization Process Integration OptiY is an open and multidisciplinary design environment, which provides direct and generic interfaces to many CAD/CAE-systems and

More information

Temperature Calculation of Pellet Rotary Kiln Based on Texture

Temperature Calculation of Pellet Rotary Kiln Based on Texture Intelligent Control and Automation, 2017, 8, 67-74 http://www.scirp.org/journal/ica ISSN Online: 2153-0661 ISSN Print: 2153-0653 Temperature Calculation of Pellet Rotary Kiln Based on Texture Chunli Lin,

More information

Research Article A Two-Level Cache for Distributed Information Retrieval in Search Engines

Research Article A Two-Level Cache for Distributed Information Retrieval in Search Engines The Scientific World Journal Volume 2013, Article ID 596724, 6 pages http://dx.doi.org/10.1155/2013/596724 Research Article A Two-Level Cache for Distributed Information Retrieval in Search Engines Weizhe

More information

THREE PHASE FAULT DIAGNOSIS BASED ON RBF NEURAL NETWORK OPTIMIZED BY PSO ALGORITHM

THREE PHASE FAULT DIAGNOSIS BASED ON RBF NEURAL NETWORK OPTIMIZED BY PSO ALGORITHM THREE PHASE FAULT DIAGNOSIS BASED ON RBF NEURAL NETWORK OPTIMIZED BY PSO ALGORITHM M. Sivakumar 1 and R. M. S. Parvathi 2 1 Anna University, Tamilnadu, India 2 Sengunthar College of Engineering, Tamilnadu,

More information

Research Article Modeling and Simulation Based on the Hybrid System of Leasing Equipment Optimal Allocation

Research Article Modeling and Simulation Based on the Hybrid System of Leasing Equipment Optimal Allocation Discrete Dynamics in Nature and Society Volume 215, Article ID 459381, 5 pages http://dxdoiorg/11155/215/459381 Research Article Modeling and Simulation Based on the Hybrid System of Leasing Equipment

More information

Open Access The Kinematics Analysis and Configuration Optimize of Quadruped Robot. Jinrong Zhang *, Chenxi Wang and Jianhua Zhang

Open Access The Kinematics Analysis and Configuration Optimize of Quadruped Robot. Jinrong Zhang *, Chenxi Wang and Jianhua Zhang Send Orders for Reprints to reprints@benthamscience.ae The Open Automation and Control Systems Journal, 014, 6, 1685-1690 1685 Open Access The Kinematics Analysis and Configuration Optimize of Quadruped

More information

A NEW APPROACH TO SOLVE ECONOMIC LOAD DISPATCH USING PARTICLE SWARM OPTIMIZATION

A NEW APPROACH TO SOLVE ECONOMIC LOAD DISPATCH USING PARTICLE SWARM OPTIMIZATION A NEW APPROACH TO SOLVE ECONOMIC LOAD DISPATCH USING PARTICLE SWARM OPTIMIZATION Manjeet Singh 1, Divesh Thareja 2 1 Department of Electrical and Electronics Engineering, Assistant Professor, HCTM Technical

More information

PSO based Adaptive Force Controller for 6 DOF Robot Manipulators

PSO based Adaptive Force Controller for 6 DOF Robot Manipulators , October 25-27, 2017, San Francisco, USA PSO based Adaptive Force Controller for 6 DOF Robot Manipulators Sutthipong Thunyajarern, Uma Seeboonruang and Somyot Kaitwanidvilai Abstract Force control in

More information

An Approach to Polygonal Approximation of Digital CurvesBasedonDiscreteParticleSwarmAlgorithm

An Approach to Polygonal Approximation of Digital CurvesBasedonDiscreteParticleSwarmAlgorithm Journal of Universal Computer Science, vol. 13, no. 10 (2007), 1449-1461 submitted: 12/6/06, accepted: 24/10/06, appeared: 28/10/07 J.UCS An Approach to Polygonal Approximation of Digital CurvesBasedonDiscreteParticleSwarmAlgorithm

More information

Meta- Heuristic based Optimization Algorithms: A Comparative Study of Genetic Algorithm and Particle Swarm Optimization

Meta- Heuristic based Optimization Algorithms: A Comparative Study of Genetic Algorithm and Particle Swarm Optimization 2017 2 nd International Electrical Engineering Conference (IEEC 2017) May. 19 th -20 th, 2017 at IEP Centre, Karachi, Pakistan Meta- Heuristic based Optimization Algorithms: A Comparative Study of Genetic

More information

Design optimization method for Francis turbine

Design optimization method for Francis turbine IOP Conference Series: Earth and Environmental Science OPEN ACCESS Design optimization method for Francis turbine To cite this article: H Kawajiri et al 2014 IOP Conf. Ser.: Earth Environ. Sci. 22 012026

More information

Comparison of Some Evolutionary Algorithms for Approximate Solutions of Optimal Control Problems

Comparison of Some Evolutionary Algorithms for Approximate Solutions of Optimal Control Problems Australian Journal of Basic and Applied Sciences, 4(8): 3366-3382, 21 ISSN 1991-8178 Comparison of Some Evolutionary Algorithms for Approximate Solutions of Optimal Control Problems Akbar H. Borzabadi,

More information

Multi-Criterion Optimal Design of Building Simulation Model using Chaos Particle Swarm Optimization

Multi-Criterion Optimal Design of Building Simulation Model using Chaos Particle Swarm Optimization , pp.21-25 http://dx.doi.org/10.14257/astl.2014.69.06 Multi-Criterion Optimal Design of Building Simulation Model using Chaos Particle Swarm Optimization Young-Jin, Kim 1,*, Hyun-Su Kim 1 1 Division of

More information

COSMOS. Vehicle Suspension Analysis ---- SolidWorks Corporation. Introduction 1. Role of vehicle suspension 2. Motion analysis 2

COSMOS. Vehicle Suspension Analysis ---- SolidWorks Corporation. Introduction 1. Role of vehicle suspension 2. Motion analysis 2 ---- WHITE PAPER Vehicle Suspension Analysis CONTENTS Introduction 1 Role of vehicle suspension 2 Motion analysis 2 Motion analysis using COSMOSMotion 3 Real-life example 4-5 Exporting loads to COSMOSWorks

More information

Dynamic Balance Design of the Rotating Arc Sensor Based on PSO Algorithm

Dynamic Balance Design of the Rotating Arc Sensor Based on PSO Algorithm 016 International Conference on Advanced Manufacture Technology and Industrial Application (AMTIA 016) ISBN: 978-1-60595-387-8 Dynamic Balance Design of the Rotating Arc Sensor Based on PSO Algorithm Ji-zhong

More information

Research Article An Improved Kernel Based Extreme Learning Machine for Robot Execution Failures

Research Article An Improved Kernel Based Extreme Learning Machine for Robot Execution Failures e Scientific World Journal, Article ID 906546, 7 pages http://dx.doi.org/10.1155/2014/906546 Research Article An Improved Kernel Based Extreme Learning Machine for Robot Execution Failures Bin Li, 1,2

More information

Auto-Extraction of Modelica Code from Finite Element Analysis or Measurement Data

Auto-Extraction of Modelica Code from Finite Element Analysis or Measurement Data Auto-Extraction of Modelica Code from Finite Element Analysis or Measurement Data The-Quan Pham, Alfred Kamusella, Holger Neubert OptiY ek, Aschaffenburg Germany, e-mail: pham@optiyeu Technische Universität

More information

A PSO-based Generic Classifier Design and Weka Implementation Study

A PSO-based Generic Classifier Design and Weka Implementation Study International Forum on Mechanical, Control and Automation (IFMCA 16) A PSO-based Generic Classifier Design and Weka Implementation Study Hui HU1, a Xiaodong MAO1, b Qin XI1, c 1 School of Economics and

More information

A *69>H>N6 #DJGC6A DG C<>C::G>C<,8>:C8:H /DA 'D 2:6G, ()-"&"3 -"(' ( +-" " " % '.+ % ' -0(+$,

A *69>H>N6 #DJGC6A DG C<>C::G>C<,8>:C8:H /DA 'D 2:6G, ()-&3 -(' ( +-   % '.+ % ' -0(+$, The structure is a very important aspect in neural network design, it is not only impossible to determine an optimal structure for a given problem, it is even impossible to prove that a given structure

More information

Flexible Body Suspension System Modeling and Simulation Using MD Nastran SOL700 in VPG Environment

Flexible Body Suspension System Modeling and Simulation Using MD Nastran SOL700 in VPG Environment 9 th International LS-DYNA Users Conference Crash/Safety (4) Flexible Body Suspension System Modeling and Simulation Using SOL700 in VPG Environment Casey Heydari, Ted Pawela MSC.Software Corporation Santa

More information

GENETIC ALGORITHM VERSUS PARTICLE SWARM OPTIMIZATION IN N-QUEEN PROBLEM

GENETIC ALGORITHM VERSUS PARTICLE SWARM OPTIMIZATION IN N-QUEEN PROBLEM Journal of Al-Nahrain University Vol.10(2), December, 2007, pp.172-177 Science GENETIC ALGORITHM VERSUS PARTICLE SWARM OPTIMIZATION IN N-QUEEN PROBLEM * Azhar W. Hammad, ** Dr. Ban N. Thannoon Al-Nahrain

More information

Computer Experiments. Designs

Computer Experiments. Designs Computer Experiments Designs Differences between physical and computer Recall experiments 1. The code is deterministic. There is no random error (measurement error). As a result, no replication is needed.

More information

A Kind of Wireless Sensor Network Coverage Optimization Algorithm Based on Genetic PSO

A Kind of Wireless Sensor Network Coverage Optimization Algorithm Based on Genetic PSO Sensors & Transducers 2013 by IFSA http://www.sensorsportal.com A Kind of Wireless Sensor Network Coverage Optimization Algorithm Based on Genetic PSO Yinghui HUANG School of Electronics and Information,

More information

Three-Dimensional Off-Line Path Planning for Unmanned Aerial Vehicle Using Modified Particle Swarm Optimization

Three-Dimensional Off-Line Path Planning for Unmanned Aerial Vehicle Using Modified Particle Swarm Optimization Three-Dimensional Off-Line Path Planning for Unmanned Aerial Vehicle Using Modified Particle Swarm Optimization Lana Dalawr Jalal Abstract This paper addresses the problem of offline path planning for

More information

IMPROVING THE PARTICLE SWARM OPTIMIZATION ALGORITHM USING THE SIMPLEX METHOD AT LATE STAGE

IMPROVING THE PARTICLE SWARM OPTIMIZATION ALGORITHM USING THE SIMPLEX METHOD AT LATE STAGE IMPROVING THE PARTICLE SWARM OPTIMIZATION ALGORITHM USING THE SIMPLEX METHOD AT LATE STAGE Fang Wang, and Yuhui Qiu Intelligent Software and Software Engineering Laboratory, Southwest-China Normal University,

More information

Prediction of traffic flow based on the EMD and wavelet neural network Teng Feng 1,a,Xiaohong Wang 1,b,Yunlai He 1,c

Prediction of traffic flow based on the EMD and wavelet neural network Teng Feng 1,a,Xiaohong Wang 1,b,Yunlai He 1,c 2nd International Conference on Electrical, Computer Engineering and Electronics (ICECEE 215) Prediction of traffic flow based on the EMD and wavelet neural network Teng Feng 1,a,Xiaohong Wang 1,b,Yunlai

More information

Reconfiguration Optimization for Loss Reduction in Distribution Networks using Hybrid PSO algorithm and Fuzzy logic

Reconfiguration Optimization for Loss Reduction in Distribution Networks using Hybrid PSO algorithm and Fuzzy logic Bulletin of Environment, Pharmacology and Life Sciences Bull. Env. Pharmacol. Life Sci., Vol 4 [9] August 2015: 115-120 2015 Academy for Environment and Life Sciences, India Online ISSN 2277-1808 Journal

More information

IMPROVED ARTIFICIAL FISH SWARM ALGORITHM AND ITS APPLICATION IN OPTIMAL DESIGN OF TRUSS STRUCTURE

IMPROVED ARTIFICIAL FISH SWARM ALGORITHM AND ITS APPLICATION IN OPTIMAL DESIGN OF TRUSS STRUCTURE IMPROVED ARTIFICIAL FISH SWARM ALGORITHM AD ITS APPLICATIO I OPTIMAL DESIG OF TRUSS STRUCTURE ACAG LI, CHEGUAG BA, SHUJIG ZHOU, SHUAGHOG PEG, XIAOHA ZHAG College of Civil Engineering, Hebei University

More information

Implementation and Comparison between PSO and BAT Algorithms for Path Planning with Unknown Environment

Implementation and Comparison between PSO and BAT Algorithms for Path Planning with Unknown Environment Implementation and Comparison between PSO and BAT Algorithms for Path Planning with Unknown Environment Dr. Mukesh Nandanwar 1, Anuj Nandanwar 2 1 Assistance Professor (CSE), Chhattisgarh Engineering College,

More information

Webinar. Machine Tool Optimization with ANSYS optislang

Webinar. Machine Tool Optimization with ANSYS optislang Webinar Machine Tool Optimization with ANSYS optislang 1 Outline Introduction Process Integration Design of Experiments & Sensitivity Analysis Multi-objective Optimization Single-objective Optimization

More information

Multidisciplinary System Design Optimization (MSDO)

Multidisciplinary System Design Optimization (MSDO) Multidisciplinary System Design Optimization (MSDO) Approximation Methods Karen Willcox Slides from: Theresa Robinson, Andrew March 1 Massachusetts Institute of Technology - Prof. de Wec and Prof. Willcox

More information

Feeder Reconfiguration Using Binary Coding Particle Swarm Optimization

Feeder Reconfiguration Using Binary Coding Particle Swarm Optimization 488 International Journal Wu-Chang of Control, Wu Automation, and Men-Shen and Systems, Tsai vol. 6, no. 4, pp. 488-494, August 2008 Feeder Reconfiguration Using Binary Coding Particle Swarm Optimization

More information

Tracking Changing Extrema with Particle Swarm Optimizer

Tracking Changing Extrema with Particle Swarm Optimizer Tracking Changing Extrema with Particle Swarm Optimizer Anthony Carlisle Department of Mathematical and Computer Sciences, Huntingdon College antho@huntingdon.edu Abstract The modification of the Particle

More information

CHAPTER 6 HYBRID AI BASED IMAGE CLASSIFICATION TECHNIQUES

CHAPTER 6 HYBRID AI BASED IMAGE CLASSIFICATION TECHNIQUES CHAPTER 6 HYBRID AI BASED IMAGE CLASSIFICATION TECHNIQUES 6.1 INTRODUCTION The exploration of applications of ANN for image classification has yielded satisfactory results. But, the scope for improving

More information

Dynamic synthesis of a multibody system: a comparative study between genetic algorithm and particle swarm optimization techniques

Dynamic synthesis of a multibody system: a comparative study between genetic algorithm and particle swarm optimization techniques Dynamic synthesis of a multibody system: a comparative study between genetic algorithm and particle swarm optimization techniques M.A.Ben Abdallah 1, I.Khemili 2, M.A.Laribi 3 and N.Aifaoui 1 1 Laboratory

More information

Particle Swarm Optimization Approach for Scheduling of Flexible Job Shops

Particle Swarm Optimization Approach for Scheduling of Flexible Job Shops Particle Swarm Optimization Approach for Scheduling of Flexible Job Shops 1 Srinivas P. S., 2 Ramachandra Raju V., 3 C.S.P Rao. 1 Associate Professor, V. R. Sdhartha Engineering College, Vijayawada 2 Professor,

More information

Multi-objective optimization of crashworthiness for mini-bus body structures

Multi-objective optimization of crashworthiness for mini-bus body structures Special Issue Article Multi-objective optimization of crashworthiness for mini-bus body structures Advances in Mechanical Engineering 2017, Vol. 9(7) 1 11 Ó The Author(s) 2017 DOI: 10.1177/1687814017711854

More information

Mobile Robot Path Planning in Static Environments using Particle Swarm Optimization

Mobile Robot Path Planning in Static Environments using Particle Swarm Optimization Mobile Robot Path Planning in Static Environments using Particle Swarm Optimization M. Shahab Alam, M. Usman Rafique, and M. Umer Khan Abstract Motion planning is a key element of robotics since it empowers

More information

Using RecurDyn. Contents

Using RecurDyn. Contents Using RecurDyn Contents 1.0 Multibody Dynamics Overview... 2 2.0 Multibody Dynamics Applications... 3 3.0 What is RecurDyn and how is it different?... 4 4.0 Types of RecurDyn Analysis... 5 5.0 MBD Simulation

More information

Research Article A New Approach for Solving Fully Fuzzy Linear Programming by Using the Lexicography Method

Research Article A New Approach for Solving Fully Fuzzy Linear Programming by Using the Lexicography Method Fuzzy Systems Volume 2016 Article ID 1538496 6 pages http://dx.doi.org/10.1155/2016/1538496 Research Article A New Approach for Solving Fully Fuzzy Linear Programming by Using the Lexicography Method A.

More information

Numerical Simulation of Middle Thick Plate in the U-Shaped Bending Spring Back and the Change of Thickness

Numerical Simulation of Middle Thick Plate in the U-Shaped Bending Spring Back and the Change of Thickness Send Orders for Reprints to reprints@benthamscience.ae 648 The Open Mechanical Engineering Journal, 2014, 8, 648-654 Open Access Numerical Simulation of Middle Thick Plate in the U-Shaped Bending Spring

More information

DynamicStructuralAnalysisofGreatFiveAxisTurningMillingComplexCNCMachine

DynamicStructuralAnalysisofGreatFiveAxisTurningMillingComplexCNCMachine Global Journal of Researches in Engineering: Mechanical and Mechanics Engineering Volume 17 Issue 2 Version 1.0 Type: Double Blind Peer Reviewed International Research Journal Publisher: Global Journals

More information

International Journal of Digital Application & Contemporary research Website: (Volume 1, Issue 7, February 2013)

International Journal of Digital Application & Contemporary research Website:   (Volume 1, Issue 7, February 2013) Performance Analysis of GA and PSO over Economic Load Dispatch Problem Sakshi Rajpoot sakshirajpoot1988@gmail.com Dr. Sandeep Bhongade sandeepbhongade@rediffmail.com Abstract Economic Load dispatch problem

More information

Finite Element Analysis and Experimental Validation of Lower Control Arm

Finite Element Analysis and Experimental Validation of Lower Control Arm Finite Element Analysis and Experimental Validation of Lower Control Arm 1 Miss. P. B. Patil, 2 Prof. M. V. Kharade 1 Assistant Professor at Vishweshwaraya Technical Campus Degree wing, Patgaon, Miraj

More information

Shape Optimization Design of Gravity Buttress of Arch Dam Based on Asynchronous Particle Swarm Optimization Method. Lei Xu

Shape Optimization Design of Gravity Buttress of Arch Dam Based on Asynchronous Particle Swarm Optimization Method. Lei Xu Applied Mechanics and Materials Submitted: 2014-08-26 ISSN: 1662-7482, Vol. 662, pp 160-163 Accepted: 2014-08-31 doi:10.4028/www.scientific.net/amm.662.160 Online: 2014-10-01 2014 Trans Tech Publications,

More information

CHAPTER 6 ORTHOGONAL PARTICLE SWARM OPTIMIZATION

CHAPTER 6 ORTHOGONAL PARTICLE SWARM OPTIMIZATION 131 CHAPTER 6 ORTHOGONAL PARTICLE SWARM OPTIMIZATION 6.1 INTRODUCTION The Orthogonal arrays are helpful in guiding the heuristic algorithms to obtain a good solution when applied to NP-hard problems. This

More information

ÉCOLE POLYTECHNIQUE DE MONTRÉAL

ÉCOLE POLYTECHNIQUE DE MONTRÉAL ÉCOLE POLYTECHNIQUE DE MONTRÉAL MODELIZATION OF A 3-PSP 3-DOF PARALLEL MANIPULATOR USED AS FLIGHT SIMULATOR MOVING SEAT. MASTER IN ENGINEERING PROJET III MEC693 SUBMITTED TO: Luc Baron Ph.D. Mechanical

More information

New developments in LS-OPT

New developments in LS-OPT 7. LS-DYNA Anwenderforum, Bamberg 2008 Optimierung II New developments in LS-OPT Nielen Stander, Tushar Goel, Willem Roux Livermore Software Technology Corporation, Livermore, CA94551, USA Summary: This

More information

Automotive covering parts drawing forming numerical simulation and the 6σ robust optimization of process parameters

Automotive covering parts drawing forming numerical simulation and the 6σ robust optimization of process parameters Available online www.jocpr.com Journal of Chemical and Pharmaceutical Research, 2014, 6(6):1473-1480 Research Article ISSN : 0975-7384 CODEN(USA) : JCPRC5 Automotive covering parts drawing forming numerical

More information

Comprehensive analysis and evaluation of big data for main transformer equipment based on PCA and Apriority

Comprehensive analysis and evaluation of big data for main transformer equipment based on PCA and Apriority IOP Conference Series: Earth and Environmental Science PAPER OPEN ACCESS Comprehensive analysis and evaluation of big data for main transformer equipment based on PCA and Apriority To cite this article:

More information

A Network Intrusion Detection System Architecture Based on Snort and. Computational Intelligence

A Network Intrusion Detection System Architecture Based on Snort and. Computational Intelligence 2nd International Conference on Electronics, Network and Computer Engineering (ICENCE 206) A Network Intrusion Detection System Architecture Based on Snort and Computational Intelligence Tao Liu, a, Da

More information

Parameter optimization model in electrical discharge machining process *

Parameter optimization model in electrical discharge machining process * 14 Journal of Zhejiang University SCIENCE A ISSN 1673-565X (Print); ISSN 1862-1775 (Online) www.zju.edu.cn/jzus; www.springerlink.com E-mail: jzus@zju.edu.cn Parameter optimization model in electrical

More information

Modified Particle Swarm Optimization

Modified Particle Swarm Optimization Modified Particle Swarm Optimization Swati Agrawal 1, R.P. Shimpi 2 1 Aerospace Engineering Department, IIT Bombay, Mumbai, India, swati.agrawal@iitb.ac.in 2 Aerospace Engineering Department, IIT Bombay,

More information

FITTING PIECEWISE LINEAR FUNCTIONS USING PARTICLE SWARM OPTIMIZATION

FITTING PIECEWISE LINEAR FUNCTIONS USING PARTICLE SWARM OPTIMIZATION Suranaree J. Sci. Technol. Vol. 19 No. 4; October - December 2012 259 FITTING PIECEWISE LINEAR FUNCTIONS USING PARTICLE SWARM OPTIMIZATION Pavee Siriruk * Received: February 28, 2013; Revised: March 12,

More information

Research on Design and Application of Computer Database Quality Evaluation Model

Research on Design and Application of Computer Database Quality Evaluation Model Research on Design and Application of Computer Database Quality Evaluation Model Abstract Hong Li, Hui Ge Shihezi Radio and TV University, Shihezi 832000, China Computer data quality evaluation is the

More information

Citation for the original published paper (version of record):

Citation for the original published paper (version of record): http://www.diva-portal.org This is the published version of a paper published in Procedia Engineering. Citation for the original published paper (version of record): Zhang, D., Lu, J., Wang, L., Li, J.

More information

Dynamics Response of Spatial Parallel Coordinate Measuring Machine with Clearances

Dynamics Response of Spatial Parallel Coordinate Measuring Machine with Clearances Sensors & Transducers 2013 by IFSA http://www.sensorsportal.com Dynamics Response of Spatial Parallel Coordinate Measuring Machine with Clearances Yu DENG, Xiulong CHEN, Suyu WANG Department of mechanical

More information

Local Selection for Heuristic Algorithms as a Factor in Accelerating Optimum Search

Local Selection for Heuristic Algorithms as a Factor in Accelerating Optimum Search Local Selection for Heuristic Algorithms as a Factor in Accelerating Optimum Search Danuta Jama Institute of Mathematics Silesian University of Technology Kaszubska 23, 44-100 Gliwice, Poland Email: Danuta.Jama@polsl.pl

More information

Multicriteria Image Thresholding Based on Multiobjective Particle Swarm Optimization

Multicriteria Image Thresholding Based on Multiobjective Particle Swarm Optimization Applied Mathematical Sciences, Vol. 8, 2014, no. 3, 131-137 HIKARI Ltd, www.m-hikari.com http://dx.doi.org/10.12988/ams.2014.3138 Multicriteria Image Thresholding Based on Multiobjective Particle Swarm

More information

[ Ω 1 ] Diagonal matrix of system 2 (updated) eigenvalues [ Φ 1 ] System 1 modal matrix [ Φ 2 ] System 2 (updated) modal matrix Φ fb

[ Ω 1 ] Diagonal matrix of system 2 (updated) eigenvalues [ Φ 1 ] System 1 modal matrix [ Φ 2 ] System 2 (updated) modal matrix Φ fb Proceedings of the IMAC-XXVIII February 1 4, 2010, Jacksonville, Florida USA 2010 Society for Experimental Mechanics Inc. Modal Test Data Adjustment For Interface Compliance Ryan E. Tuttle, Member of the

More information

Fault Diagnosis of Wind Turbine Based on ELMD and FCM

Fault Diagnosis of Wind Turbine Based on ELMD and FCM Send Orders for Reprints to reprints@benthamscience.ae 76 The Open Mechanical Engineering Journal, 24, 8, 76-72 Fault Diagnosis of Wind Turbine Based on ELMD and FCM Open Access Xianjin Luo * and Xiumei

More information

Image Quality Assessment based on Improved Structural SIMilarity

Image Quality Assessment based on Improved Structural SIMilarity Image Quality Assessment based on Improved Structural SIMilarity Jinjian Wu 1, Fei Qi 2, and Guangming Shi 3 School of Electronic Engineering, Xidian University, Xi an, Shaanxi, 710071, P.R. China 1 jinjian.wu@mail.xidian.edu.cn

More information

Adjacent Zero Communication Parallel Cloud Computing Method and Its System for

Adjacent Zero Communication Parallel Cloud Computing Method and Its System for Advances in Astronomy Volume 2016, Article ID 9049828, 5 pages http://dx.doi.org/10.1155/2016/9049828 Research Article Adjacent Zero Communication Parallel Cloud Computing Method and Its System for N-Body

More information

A Multiobjective Memetic Algorithm Based on Particle Swarm Optimization

A Multiobjective Memetic Algorithm Based on Particle Swarm Optimization A Multiobjective Memetic Algorithm Based on Particle Swarm Optimization Dr. Liu Dasheng James Cook University, Singapore / 48 Outline of Talk. Particle Swam Optimization 2. Multiobjective Particle Swarm

More information

Artificial Neural Network-Based Prediction of Human Posture

Artificial Neural Network-Based Prediction of Human Posture Artificial Neural Network-Based Prediction of Human Posture Abstract The use of an artificial neural network (ANN) in many practical complicated problems encourages its implementation in the digital human

More information

QUANTUM BASED PSO TECHNIQUE FOR IMAGE SEGMENTATION

QUANTUM BASED PSO TECHNIQUE FOR IMAGE SEGMENTATION International Journal of Computer Engineering and Applications, Volume VIII, Issue I, Part I, October 14 QUANTUM BASED PSO TECHNIQUE FOR IMAGE SEGMENTATION Shradha Chawla 1, Vivek Panwar 2 1 Department

More information

WEINER FILTER AND SUB-BLOCK DECOMPOSITION BASED IMAGE RESTORATION FOR MEDICAL APPLICATIONS

WEINER FILTER AND SUB-BLOCK DECOMPOSITION BASED IMAGE RESTORATION FOR MEDICAL APPLICATIONS WEINER FILTER AND SUB-BLOCK DECOMPOSITION BASED IMAGE RESTORATION FOR MEDICAL APPLICATIONS ARIFA SULTANA 1 & KANDARPA KUMAR SARMA 2 1,2 Department of Electronics and Communication Engineering, Gauhati

More information

Research Article Optimization of Access Threshold for Cognitive Radio Networks with Prioritized Secondary Users

Research Article Optimization of Access Threshold for Cognitive Radio Networks with Prioritized Secondary Users Mobile Information Systems Volume 2016, Article ID 3297938, 8 pages http://dx.doi.org/10.1155/2016/3297938 Research Article Optimization of Access Threshold for Cognitive Radio Networks with Prioritized

More information

Model Parameter Estimation

Model Parameter Estimation Model Parameter Estimation Shan He School for Computational Science University of Birmingham Module 06-23836: Computational Modelling with MATLAB Outline Outline of Topics Concepts about model parameter

More information

13. Learning Ballistic Movementsof a Robot Arm 212

13. Learning Ballistic Movementsof a Robot Arm 212 13. Learning Ballistic Movementsof a Robot Arm 212 13. LEARNING BALLISTIC MOVEMENTS OF A ROBOT ARM 13.1 Problem and Model Approach After a sufficiently long training phase, the network described in the

More information

An improved PID neural network controller for long time delay systems using particle swarm optimization algorithm

An improved PID neural network controller for long time delay systems using particle swarm optimization algorithm An improved PID neural network controller for long time delay systems using particle swarm optimization algorithm A. Lari, A. Khosravi and A. Alfi Faculty of Electrical and Computer Engineering, Noushirvani

More information

UAV Motion-Blurred Image Restoration Using Improved Continuous Hopfield Network Image Restoration Algorithm

UAV Motion-Blurred Image Restoration Using Improved Continuous Hopfield Network Image Restoration Algorithm Journal of Information Hiding and Multimedia Signal Processing c 207 ISSN 2073-422 Ubiquitous International Volume 8, Number 4, July 207 UAV Motion-Blurred Image Restoration Using Improved Continuous Hopfield

More information

Parametric. Practices. Patrick Cunningham. CAE Associates Inc. and ANSYS Inc. Proprietary 2012 CAE Associates Inc. and ANSYS Inc. All rights reserved.

Parametric. Practices. Patrick Cunningham. CAE Associates Inc. and ANSYS Inc. Proprietary 2012 CAE Associates Inc. and ANSYS Inc. All rights reserved. Parametric Modeling Best Practices Patrick Cunningham July, 2012 CAE Associates Inc. and ANSYS Inc. Proprietary 2012 CAE Associates Inc. and ANSYS Inc. All rights reserved. E-Learning Webinar Series This

More information

LIGHTWEIGHT DESIGN OF SEAT CUSHION EXTENSION MODULES USING THE PROPERTIES OF PLASTIC AND HCA-SIMP

LIGHTWEIGHT DESIGN OF SEAT CUSHION EXTENSION MODULES USING THE PROPERTIES OF PLASTIC AND HCA-SIMP International Journal of Mechanical Engineering and Technology (IJMET) Volume 9, Issue 5, May 2018, pp. 624 632, Article ID: IJMET_09_05_068 Available online at http://www.iaeme.com/ijmet/issues.asp?jtype=ijmet&vtype=9&itype=5

More information

Surrogate-assisted Self-accelerated Particle Swarm Optimization

Surrogate-assisted Self-accelerated Particle Swarm Optimization Surrogate-assisted Self-accelerated Particle Swarm Optimization Kambiz Haji Hajikolaei 1, Amir Safari, G. Gary Wang ±, Hirpa G. Lemu, ± School of Mechatronic Systems Engineering, Simon Fraser University,

More information

Particle Swarm Optimization

Particle Swarm Optimization Particle Swarm Optimization Gonçalo Pereira INESC-ID and Instituto Superior Técnico Porto Salvo, Portugal gpereira@gaips.inesc-id.pt April 15, 2011 1 What is it? Particle Swarm Optimization is an algorithm

More information

Chapter 14 Global Search Algorithms

Chapter 14 Global Search Algorithms Chapter 14 Global Search Algorithms An Introduction to Optimization Spring, 2015 Wei-Ta Chu 1 Introduction We discuss various search methods that attempts to search throughout the entire feasible set.

More information

Topology Optimization Design of Automotive Engine Bracket

Topology Optimization Design of Automotive Engine Bracket Energy and Power Engineering, 2016, 8, 230-235 Published Online April 2016 in SciRes. http://www.scirp.org/journal/epe http://dx.doi.org/10.4236/epe.2016.84021 Topology Optimization Design of Automotive

More information

Particle swarm optimization for mobile network design

Particle swarm optimization for mobile network design Particle swarm optimization for mobile network design Ayman A. El-Saleh 1,2a), Mahamod Ismail 1, R. Viknesh 2, C. C. Mark 2, and M. L. Chan 2 1 Department of Electrical, Electronics, and Systems Engineering,

More information

PARTICLE SWARM OPTIMIZATION (PSO)

PARTICLE SWARM OPTIMIZATION (PSO) PARTICLE SWARM OPTIMIZATION (PSO) J. Kennedy and R. Eberhart, Particle Swarm Optimization. Proceedings of the Fourth IEEE Int. Conference on Neural Networks, 1995. A population based optimization technique

More information

Webinar Parameter Identification with optislang. Dynardo GmbH

Webinar Parameter Identification with optislang. Dynardo GmbH Webinar Parameter Identification with optislang Dynardo GmbH 1 Outline Theoretical background Process Integration Sensitivity analysis Least squares minimization Example: Identification of material parameters

More information

A METHOD TO MODELIZE THE OVERALL STIFFNESS OF A BUILDING IN A STICK MODEL FITTED TO A 3D MODEL

A METHOD TO MODELIZE THE OVERALL STIFFNESS OF A BUILDING IN A STICK MODEL FITTED TO A 3D MODEL A METHOD TO MODELIE THE OVERALL STIFFNESS OF A BUILDING IN A STICK MODEL FITTED TO A 3D MODEL Marc LEBELLE 1 SUMMARY The aseismic design of a building using the spectral analysis of a stick model presents

More information

Two-link Mobile Manipulator Model

Two-link Mobile Manipulator Model American Journal of Mechanical Engineering, 017, Vol. 5, No. 6, 355-361 Available online at http://pubs.sciepub.com/ajme/5/6/5 Science and Education Publishing DOI:10.1691/ajme-5-6-5 Two-link Mobile Manipulator

More information

DETERMINING PARETO OPTIMAL CONTROLLER PARAMETER SETS OF AIRCRAFT CONTROL SYSTEMS USING GENETIC ALGORITHM

DETERMINING PARETO OPTIMAL CONTROLLER PARAMETER SETS OF AIRCRAFT CONTROL SYSTEMS USING GENETIC ALGORITHM DETERMINING PARETO OPTIMAL CONTROLLER PARAMETER SETS OF AIRCRAFT CONTROL SYSTEMS USING GENETIC ALGORITHM Can ÖZDEMİR and Ayşe KAHVECİOĞLU School of Civil Aviation Anadolu University 2647 Eskişehir TURKEY

More information

A Novel Face Recognition Algorithm for Distinguishing FaceswithVariousAngles

A Novel Face Recognition Algorithm for Distinguishing FaceswithVariousAngles International Journal of Automation and Computing 05(), April 008, 193-197 DOI: 10.1007/s11633-008-0193-x A Novel Face Recognition Algorithm for Distinguishing FaceswithVariousAngles Yong-Zhong Lu School

More information

Designing of Optimized Combinational Circuits Using Particle Swarm Optimization Algorithm

Designing of Optimized Combinational Circuits Using Particle Swarm Optimization Algorithm Advances in Computational Sciences and Technology ISSN 0973-6107 Volume 10, Number 8 (2017) pp. 2395-2410 Research India Publications http://www.ripublication.com Designing of Optimized Combinational Circuits

More information